基于深度信念网络的隐马尔可夫模型的自发语音情感识别

Duc Le, E. Provost
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引用次数: 102

摘要

情绪识别的研究旨在深入了解情绪的时间特性。然而,由于不理想的记录条件和高度模糊的基础真值标签,从自发语音中自动识别情感是具有挑战性的。此外,情绪识别系统通常处理嘈杂的高维数据,因此很难找到具有代表性的特征并训练有效的分类器。我们通过使用深度信念网络来解决这个问题,它可以在低级特征之间建立复杂和非线性的高级关系。我们提出并评估了一套基于隐马尔可夫模型和深度信念网络的混合分类器。我们在FAU Aibo上取得了最先进的结果,FAU Aibo是情感识别领域的一个基准数据集。我们的工作为语言和情感之间重要的异同提供了洞见。
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Emotion recognition from spontaneous speech using Hidden Markov models with deep belief networks
Research in emotion recognition seeks to develop insights into the temporal properties of emotion. However, automatic emotion recognition from spontaneous speech is challenging due to non-ideal recording conditions and highly ambiguous ground truth labels. Further, emotion recognition systems typically work with noisy high-dimensional data, rendering it difficult to find representative features and train an effective classifier. We tackle this problem by using Deep Belief Networks, which can model complex and non-linear high-level relationships between low-level features. We propose and evaluate a suite of hybrid classifiers based on Hidden Markov Models and Deep Belief Networks. We achieve state-of-the-art results on FAU Aibo, a benchmark dataset in emotion recognition [1]. Our work provides insights into important similarities and differences between speech and emotion.
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